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Key Technologies Panel. Milind Buddhikot, Nokia Bell Labs milind.buddhikot@bell-labs.com April 6, 2016. Key Projects Panel. Goals: Communicate the state of current spectrum measurement efforts.
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Key Technologies Panel Milind Buddhikot, Nokia Bell Labsmilind.buddhikot@bell-labs.com April 6, 2016 NSF Workshop on Spectrum Measurements & Spectrum Management
Key Projects Panel • Goals: • Communicate the state of current spectrum measurement efforts. • Describe the plans for the immediate future (what is in the charted roadmap, and what are the wish list features that you cannot have at this time). • Identify how these measurements efforts are informing analytical spectrum usage models, and where do such measurement efforts fail)? • Panelists: • Mike Cotton – NIST ITS • Preston Marshall – Google • Greg Buchwald – Motorola Solutions • Paul Brown – Paradigm4 • Joydeep Acharya – Hitachi NSF Workshop on Spectrum Measurements & Spectrum Management
Spectrum Sensing • Spectrum sensing: Key building block technology for enabling efficient sharing of spectrum in either tiered or peer format • Focus: Tiered sharing with primary (incumbent) and multiple tiers of secondary users • Sensing can be building block for following functions • Spatio-temporal spectrum usage to access feasibility of sharing • Primary protection • Accurate exclusion zone computation • Tiered spectrum management for secondary use • Dynamic channel ranking • Dynamic channel assignment • Spectrum enforcement via detection of interference that leads to violation of • Primary protection guarantees • Secondary channel assignment (exclusivity) guarantees NSF Workshop on Spectrum Measurements & Spectrum Management
Where are we after 10 years? • First wave of spectrum measurement (“observation”) efforts • Long term measurements in a “space point” • Successful in making case for potential of sharing • Providing some key insights into temporal dynamics • First wave of sensing • Development theory and systems for localized sensors (energy, feature and cyclostationary) for specific bands • Proofs of need for collaborative sensing • Limited proofs of usefulness of sensing in addressing limitations of propagation model based spatial exclusion zones (e.g.: in TV whitespace) • De-emphasized as complex, expensive and a deterrent to rapid adoption and success of spectrum sharing NSF Workshop on Spectrum Measurements & Spectrum Management
Way Forward • Leveraging Spectrum Access Server (SAS) based framework to make sensing a critical piece of “practical”, “scalable”, “deployable” sharing • Collaborative fusion of distributed sensor data at SAS to guide primary protection zone, secondary management and enforcement functions • Issues • “In-network sensing” : Large number of low-cost, poor, dirty sensors vs. accurate sensors vs. dedicated sensors • Amount of data -- Collecting meaningful data vs. Junk data • Shipping data vs. summaries vs. events • Architecting data processing by exploiting geographical structure (inherently scalable for small spatial scope decisions) • Limitation of control loop latency --- Time elapse between “Collection of data to epoch of “action” based on that data”. • “Just right amount of sensing”: How much sensing is enough? • Sensing for secondary tier co-existence and existence within tiers NSF Workshop on Spectrum Measurements & Spectrum Management
Example of 3.5 GHz End-to-End Architecture Federal Xmitters Environment Sensing Capability (ESC) 1 Federal SAS(FSAS) 2-Way API With Information Obfuscation FSS Earth station Explicit information Optional Federal Secure Network Commercial SAS(CSAS) 2 Internet Sensing information Sharing API 3 Operator RAN SON/EMSServer Sensor samples@ Location 5 Spatial map SensorSamples T1 Cellular Operator Core T2 Macro Cell • Chang Wook Kim, JihoonRyooand Milind M. Buddhikot, • “Design and Implementation of an End-to-End Architecture for 3.5 GHz Shared Spectrum,”7th IEEE BL SAS, Nov 29-Oct 2, 2015. 4 Location1 Small Cellwith Spectrum Sensor Location 5 Location 4 Location 2 Location 3
Order of Presentations Mike Cotton – NIST ITS Preston Marshall – Google Greg Buchwald – Motorola Solutions Paul Brown – Paradigm4 Joydeep Acharya – Hitachi
Questions Single most important problem in your judgment that community should address What are the implications of limitations of database technologies on distributed sensor data collection and querying? Challenges in managing ‘Sea of ordinary sensors’ and resulting data • Scheduling sensing • Time constants over which control loop can functions : 10s of secs vs. mins Basic capabilities in low cost sensors in UE and APs – “can” vs. “should” vs. “will” Sub-6 GHz spectrum has been focus. cmWave and mmWave present altogether different landscape. Does sensing play role in defining architecture especially when channel widths are large and harmonized spectrum may be small in amount